01-01-2025, 04:13 PM
English | December 19, 2024 | ASIN: B0D98JY42P | 607 pages | PDF | 110 Mb
Machine Learning With Python A Comprehensive Guide (MARTIN NEEL) (2023)
Catergory: Computer Technology, Nonfiction
Quote:"๐ Machine Learning with Python: A Comprehensive Guide" is your gateway to mastering the exciting world of Machine Learning (ML) using Python. This book is meticulously crafted to cater to beginners, professionals, and students alike, offering a step-by-step approach to understanding and implementing ML concepts.
๐ Key Features
โข Accessible explanations of complex ML concepts
โข Hands-on examples and practical applications
โข Comprehensive coverage from basics to advanced topics
โข Real-world projects to build your portfolio
โข Focus on Python, the leading language for ML
๐ In this comprehensive guide, you'll journey through eight carefully structured sections
โข Introduction to Machine Learning Dive into the fundamentals of ML, understand its significance in today's world, and set up your Python environment for seamless learning.
โข Data Preparation and Preprocessing Master the crucial skills of data cleaning, transformation, and feature engineering - the backbone of any successful ML project.
โข Supervised Learning Explore predictive modeling techniques including regression and classification. Learn to build models that can forecast outcomes and categorize data with precision.
โข Unsupervised Learning Discover patterns and structures in data using clustering and dimensionality reduction techniques, opening up new insights in your datasets.
โข Advanced Topics Venture into cutting-edge areas like deep learning, natural language processing, and time series analysis, equipping you with skills at the forefront of ML innovation.
โข Model Optimization and Evaluation
โข Practical Projects
โข Appendix
๐ Why This Book Stands Out
โข Bridges the gap between theory and practice with intuitive explanations and code examples
โข Focuses on real-world applications, preparing you for actual ML challenges in various industries
โข Provides a smooth learning curve, gradually building from foundational concepts to advanced techniques
โข Emphasizes hands-on learning with exercises and projects throughout the book
โข Covers the entire ML pipeline from data preprocessing to model deployment
๐ Who Should Read This Book
โข Aspiring data scientists and ML engineers looking to start their journey
โข Software developers aiming to add ML skills to their toolkit
โข Students and educators seeking a comprehensive ML resource
โข Professionals considering a career transition into data science or AI
โข Anyone curious about ML and its applications in today's world
๐ What You'll Learn
โข Essential Python libraries for ML (NumPy, Pandas, Scikit-learn, TensorFlow, PyTorch)
โข Data visualization techniques to gain insights from your datasets
โข How to build, train, and evaluate various ML models
โข Techniques for improving model performance and avoiding common pitfalls
โข Best practices for deploying ML models in production environments
โข Ethical considerations in ML and AI
๐ By the end of this book, you'll have
โข A solid understanding of ML concepts and their practical applications
โข The ability to implement ML solutions using Python
โข Experience with real-world ML projects
โข A portfolio of work to showcase your new skills
โข The confidence to tackle complex ML challenges in various domains
"๐ Machine Learning with Python: A Comprehensive Guide" is more than just a book - it's your companion in the journey to becoming a proficient ML practitioner. Whether you're looking to enhance your career prospects, solve complex problems, or simply satisfy your curiosity about AI and ML, this book provides the knowledge and skills you need to succeed.
๐ Start your ML journey today and unlock the power of intelligent algorithms with Python!
๐ Contents of Download:
๐ B0D98JY42P.pdf (MARTIN NEEL) (2023) (110.31 MB)
[center]โ๐ท- - - - -โฝโโโโง โคโโค โงโโโโพ - - - -๐ทโ[/center]
โญ๏ธ Machine Learning With Python A Comprehensive Guide โ (110.31 MB)
RapidGator Link(s)
NitroFlare Link(s)